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Entangled Conditional Adversarial Autoencoder for de Novo Drug Discovery
Author(s) -
Daniil Polykovskiy,
Alexander Zhebrak,
Dmitry Vetrov,
Yan A. Ivanenkov,
Vladimir Aladinskiy,
Polina Mamoshina,
Marine E. Bozdaganyan,
Alexander Aliper,
Alex Zhavoronkov,
Artur Kadurin
Publication year - 2018
Publication title -
molecular pharmaceutics
Language(s) - Uncategorized
Resource type - Journals
SCImago Journal Rank - 1.13
H-Index - 127
eISSN - 1543-8392
pISSN - 1543-8384
DOI - 10.1021/acs.molpharmaceut.8b00839
Subject(s) - drug discovery , autoencoder , computational biology , computer science , generative grammar , drug repositioning , artificial intelligence , machine learning , drug , bioinformatics , deep learning , biology , pharmacology
Modern computational approaches and machine learning techniques accelerate the invention of new drugs. Generative models can discover novel molecular structures within hours, while conventional drug discovery pipelines require months of work. In this article, we propose a new generative architecture, entangled conditional adversarial autoencoder, that generates molecular structures based on various properties, such as activity against a specific protein, solubility, or ease of synthesis. We apply the proposed model to generate a novel inhibitor of Janus kinase 3, implicated in rheumatoid arthritis, psoriasis, and vitiligo. The discovered molecule was tested in vitro and showed good activity and selectivity.

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